首页> 外文期刊>Frontiers in Genetics >An introductory review of parallel independent component analysis (p-ICA) and a guide to applying p-ICA to genetic data and imaging phenotypes to identify disease-associated biological pathways and systems in common complex disorders
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An introductory review of parallel independent component analysis (p-ICA) and a guide to applying p-ICA to genetic data and imaging phenotypes to identify disease-associated biological pathways and systems in common complex disorders

机译:平行独立成分分析(p-ICA)入门性综述,以及将p-ICA应用到遗传数据和成像表型中以识别常见复杂疾病中与疾病相关的生物学途径和系统的指南

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Complex inherited phenotypes, including those for many common medical and psychiatric diseases, are most likely underpinned by multiple genes contributing to interlocking molecular biological processes, along with environmental factors ( Owen et al., 2010 ). Despite this, genotyping strategies for complex, inherited, disease-related phenotypes mostly employ univariate analyses, e.g., genome wide association. Such procedures most often identify isolated risk-related SNPs or loci, not the underlying biological pathways necessary to help guide the development of novel treatment approaches. This article focuses on the multivariate analysis strategy of parallel (i.e., simultaneous combination of SNP and neuroimage information) independent component analysis (p-ICA), which typically yields large clusters of functionally related SNPs statistically correlated with phenotype components, whose overall molecular biologic relevance is inferred subsequently using annotation software suites. Because this is a novel approach, whose details are relatively new to the field we summarize its underlying principles and address conceptual questions regarding interpretation of resulting data and provide practical illustrations of the method.
机译:复杂的遗传表型,包括许多常见医学和精神疾病的表型,最有可能是由多个基因共同支持的,这些基因与环境因素共同作用于分子生物学过程的互锁(Owen等,2010)。尽管如此,复杂,遗传,疾病相关表型的基因分型策略大多采用单变量分析,例如全基因组关联。此类程序通常会确定与风险相关的孤立SNP或基因座,而不是有助于指导开发新治疗方法的潜在生物学途径。本文重点介绍并行(即SNP和神经图像信息的同时组合)独立成分分析(p-ICA)的多变量分析策略,该策略通常会产生与表型成分在统计上相关的功能相关SNP的大簇,其总体分子生物学相关性随后使用注释软件套件进行推断。由于这是一种新颖的方法,其详细信息对于本领域来说是相对较新的,因此我们总结了其基本原理并解决了有关解释所得数据的概念性问题,并提供了该方法的实用说明。

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